Calibrating the Heston Model with Deep Differential Networks

Chen Zhang, Giovanni Amici, Marco Morandotti
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Abstract

We propose a gradient-based deep learning framework to calibrate the Heston option pricing model (Heston, 1993). Our neural network, henceforth deep differential network (DDN), learns both the Heston pricing formula for plain-vanilla options and the partial derivatives with respect to the model parameters. The price sensitivities estimated by the DDN are not subject to the numerical issues that can be encountered in computing the gradient of the Heston pricing function. Thus, our network is an excellent pricing engine for fast gradient-based calibrations. Extensive tests on selected equity markets show that the DDN significantly outperforms non-differential feedforward neural networks in terms of calibration accuracy. In addition, it dramatically reduces the computational time with respect to global optimizers that do not use gradient information.
用深度差分网络校准赫斯顿模型
我们提出了一种基于梯度的深度学习框架来校准海斯顿期权定价模型(海斯顿,1993 年)。我们的神经网络(以下简称为深度微分网络(DDN))既能学习普通香草期权的海斯顿定价公式,也能学习模型参数的部分导数。DDN 估算的价格敏感性不受计算海斯顿定价函数梯度时可能遇到的数值问题的影响。因此,我们的网络是基于梯度校准的快速定价引擎。对选定股票市场的广泛测试表明,DDN 在校准精度方面明显优于非差分前馈神经网络。此外,与不使用梯度信息的全局优化器相比,它还大大减少了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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